/aerial-semantic-segmentation

Use semantic segmentation on Semantic Drone Dataset focuses to understand urban scenes to increase the safety of autonomous drone flight and landing procedures.

Primary LanguageJupyter Notebook

Aerial-semantic-segmentation

Dataset Overview

The Semantic Drone Dataset focuses on semantic understanding of urban scenes for increasing the safety of autonomous drone flight and landing procedures. The imagery depicts more than 20 houses from nadir (bird's eye) view acquired at an altitude of 5 to 30 meters above ground. A high resolution camera was used to acquire images at a size of 6000x4000px (24Mpx). The training set contains 400 publicly available images and the test set is made up of 200 private images.

Semantic segmentation

The complexity of the dataset is limited to 20 classes: tree, gras, other vegetation, dirt, gravel, rocks, water, paved area, pool, person, dog, car, bicycle, roof, wall, fence, fence-pole, window, door, obstacle